深度离散注意引导哈希人脸图像检索

Zhi Xiong, Dayan Wu, Wen Gu, Haisu Zhang, Bo Li, Weiping Wang
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引用次数: 9

摘要

近年来,人脸图像哈希算法因其存储和计算效率高而被广泛应用于大规模人脸图像检索。然而,由于人脸图像具有较大的身份内变异(相同的身份具有不同的姿势、光照和面部表情)和较小的身份间可分离性(不同的身份看起来相似),现有的人脸图像哈希方法产生判别哈希码的能力有限。在这项工作中,我们提出了一种专门为人脸图像检索设计的深度哈希方法,称为深度离散注意引导哈希(DAGH)。在DAGH中,哈希码的判别能力通过设计良好的离散身份损失来增强,其中不仅鼓励了不同身份的学习哈希码的可分离性,而且压缩了相同身份的哈希码的同一性内变化。此外,为了获得细粒度的人脸特征,DAGH采用了多注意级联网络结构来突出判别性人脸特征。此外,我们在网络中引入离散哈希层,并提出改进的反向传播算法,使我们的模型可以在离散约束下进行优化。在两个广泛使用的人脸图像检索数据集上的实验表明,DAGH比最先进的人脸图像哈希方法表现出令人鼓舞的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Discrete Attention Guided Hashing for Face Image Retrieval
Recently, face image hashing has been proposed in large-scale face image retrieval due to its storage and computational efficiency. However, owing to the large intra-identity variation (same identity with different poses, illuminations, and facial expressions) and the small inter-identity separability (different identities look similar) of face images, existing face image hashing methods have limited power to generate discriminative hash codes. In this work, we propose a deep hashing method specially designed for face image retrieval named deep Discrete Attention Guided Hashing (DAGH). In DAGH, the discriminative power of hash codes is enhanced by a well-designed discrete identity loss, where not only the separability of the learned hash codes for different identities is encouraged, but also the intra-identity variation of the hash codes for the same identities is compacted. Besides, to obtain the fine-grained face features, DAGH employs a multi-attention cascade network structure to highlight discriminative face features. Moreover, we introduce a discrete hash layer into the network, along with the proposed modified backpropagation algorithm, our model can be optimized under discrete constraint. Experiments on two widely used face image retrieval datasets demonstrate the inspiring performance of DAGH over the state-of-the-art face image hashing methods.
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